I have a dataframe of

date, string, string

I want to select dates before a certain period. I have tried the following with no luck

 data.filter(data("date") < new java.sql.Date(format.parse("2015-03-14").getTime))

I'm getting an error stating the following

org.apache.spark.sql.AnalysisException: resolved attribute(s) date#75 missing from date#72,uid#73,iid#74 in operator !Filter (date#75 < 16508);

As far as I can guess the query is incorrect. Can anyone show me what way the query should be formatted?

I checked that all enteries in the dataframe have values - they do.

  • 5
    if one of the answers provided solves your problem, please accept it to close the issue. Thanks ! – eliasah Jul 4 '16 at 8:27
  • 4
    @steve: could you respond to the answer? please consider marking it as accepted if that resolves the problem as it was open for so long period of time. – mrsrinivas Feb 28 '17 at 12:28
  • 3
    SOF to Steve .. any reason not to accept an answer? – javadba Sep 14 '17 at 22:32

The following solutions are applicable since spark 1.5 :

For lower than :

// filter data where the date is lesser than 2015-03-14

For greater than :

// filter data where the date is greater than 2015-03-14

For equality, you can use either equalTo or === :

data.filter(data("date") === lit("2015-03-14"))

If your DataFrame date column is of type StringType, you can convert it using the to_date function :

// filter data where the date is greater than 2015-03-14

You can also filter according to a year using the year function :

// filter data where year is greater or equal to 2016
| improve this answer | |
  • Is there any option like between for date column in spark? Also i have date in 'dd/MM/yyyy' format. – Sivailango Nov 26 '15 at 12:41
  • @Sivailango Of course, it's filter on between, check my answer here – eliasah Nov 26 '15 at 13:14
  • df.select(df("ID"), date_format(df("Week_Ending_Date"), "yyyy-MM-dd")) .filter(date_format(df("Week_Ending_Date"), "yyyy-MM-dd").between("2015-07-05", "2015-09-02")) Is it right? Also i am looking your another answer here stackoverflow.com/questions/33938806/… – Sivailango Nov 26 '15 at 13:22
  • is there any way to tell gt o lt to be like now - 5 months? or i just have to calculate that date and give it to the function as string – Raul H Oct 4 '16 at 20:41
  • If you want to use current date with date diff, comparing dates will be different. – eliasah Oct 4 '16 at 20:48

In PySpark(python) one of the option is to have the column in unix_timestamp format.We can convert string to unix_timestamp and specify the format as shown below. Note we need to import unix_timestamp and lit function

from pyspark.sql.functions import unix_timestamp, lit

df.withColumn("tx_date", to_date(unix_timestamp(df_cast["date"], "MM/dd/yyyy").cast("timestamp")))

Now we can apply the filters

df_cast.filter(df_cast["tx_date"] >= lit('2017-01-01')) \
       .filter(df_cast["tx_date"] <= lit('2017-01-31')).show()
| improve this answer | |

Don't use this as suggested in other answers

.filter(f.col("dateColumn") < f.lit('2017-11-01'))

But use this instead

.filter(f.col("dateColumn") < f.unix_timestamp(f.lit('2017-11-01 00:00:00')).cast('timestamp'))

This will use the TimestampType instead of the StringType, which will be more performant in some cases. For example Parquet predicate pushdown will only work with the latter.

| improve this answer | |

I find the most readable way to express this is using a sql expression:

df.filter("my_date < date'2015-01-01'")

we can verify this works correctly by looking at the physical plan from .explain()

+- *(1) Filter (isnotnull(my_date#22) && (my_date#22 < 16436))
| improve this answer | |
| improve this answer | |

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